Files
ST-Amily2-Chat-Optimisation…/core/fractal-memory.js

230 lines
6.4 KiB
JavaScript

import { getContext, extension_settings } from "/scripts/extensions.js";
import { setExtensionPrompt, eventSource, event_types } from "/script.js";
import { callAI } from "./api.js";
import { callNgmsAI } from "./api/Ngms_api.js";
import { extensionName } from "../utils/settings.js";
import { getMemoryState, updateRow, insertRow, deleteRow, clearAllTables } from "./table-system/manager.js";
const FRACTAL_INJECTION_KEY = 'HANLINYUAN_FRACTAL_MEMORY';
const BUFFER_SIZE = 5;
const UPDATE_INTERVAL = 5;
export async function initializeFractalMemory() {
eventSource.on(event_types.MESSAGE_RECEIVED, handleMessageReceived);
console.log('[分形记忆] 系统已启动,正在构建多维记忆...');
}
let messageCounter = 0;
async function handleMessageReceived() {
messageCounter++;
if (messageCounter >= UPDATE_INTERVAL) {
messageCounter = 0;
await updateSceneLayer();
}
}
async function updateSceneLayer() {
const context = getContext();
const settings = extension_settings[extensionName];
if (!settings.fractalMemory) {
settings.fractalMemory = {
saga: "故事刚刚开始...",
arc: [],
scene: []
};
}
const memory = settings.fractalMemory;
console.log('[分形记忆] 正在提取近期事态...');
const recentChat = context.chat.slice(-UPDATE_INTERVAL).map(m => `${m.name}: ${m.mes}`).join('\n');
const prompt = `
请将以下对话总结为一句话的“场景事件”,描述发生了什么。
要求:简洁、客观、包含关键动作。
【对话内容】
${recentChat}
【输出】
(仅输出一句话总结)
`;
const newEvent = await _callLLM(prompt);
if (!newEvent) return;
console.log(`[分形记忆] 新增场景事件: ${newEvent}`);
memory.scene.push(newEvent);
if (memory.scene.length >= BUFFER_SIZE) {
await compressSceneToArc();
}
context.saveSettingsDebounced();
injectFractalMemory();
syncToTables();
}
async function compressSceneToArc() {
const context = getContext();
const settings = extension_settings[extensionName];
const memory = settings.fractalMemory;
console.log('[分形记忆] 场景层已满,正在压缩至篇章层...');
const sceneEvents = memory.scene.join('\n');
const prompt = `
请将以下 5 个连续的“场景事件”合并总结为一条“篇章节点”。
这条节点应该概括这一系列事件对剧情的推动作用。
【场景事件列表】
${sceneEvents}
【输出】
(仅输出一句话总结)
`;
const newArcEvent = await _callLLM(prompt);
if (!newArcEvent) return;
console.log(`[分形记忆] 新增篇章节点: ${newArcEvent}`);
memory.arc.push(newArcEvent);
memory.scene = [];
if (memory.arc.length >= BUFFER_SIZE) {
await compressArcToSaga();
}
}
async function compressArcToSaga() {
const context = getContext();
const settings = extension_settings[extensionName];
const memory = settings.fractalMemory;
console.log('[分形记忆] 篇章层已满,正在重写宏观史诗...');
const arcEvents = memory.arc.join('\n');
const oldSaga = memory.saga;
const prompt = `
请根据“旧的宏观史诗”和新发生的“篇章事件”,重写并更新整个故事的“宏观史诗”。
宏观史诗应该是一个高度概括的段落,描述故事的起因、经过和当前状态。
【旧史诗】
${oldSaga}
【新篇章事件】
${arcEvents}
【输出】
(输出一段更新后的宏观史诗,约 100-200 字)
`;
const newSaga = await _callLLM(prompt);
if (!newSaga) return;
console.log(`[分形记忆] 宏观史诗已更新。`);
memory.saga = newSaga;
memory.arc = [];
}
function syncToTables() {
const settings = extension_settings[extensionName];
if (!settings || !settings.fractalMemory) return;
const memory = settings.fractalMemory;
const tables = getMemoryState();
if (!tables) return;
const targetTableName = '【系统】分形记忆';
const tableIndex = tables.findIndex(t => t.name === targetTableName);
if (tableIndex !== -1) {
const table = tables[tableIndex];
const targetRows = [];
targetRows.push({
0: '宏观史诗',
1: memory.saga
});
memory.arc.forEach((event, i) => {
targetRows.push({
0: `篇章-${i+1}`,
1: event
});
});
memory.scene.forEach((event, i) => {
targetRows.push({
0: `场景-${i+1}`,
1: event
});
});
while (table.rows.length > targetRows.length) {
deleteRow(tableIndex, table.rows.length - 1);
}
targetRows.forEach((rowData, i) => {
if (i < table.rows.length) {
updateRow(tableIndex, i, rowData);
} else {
insertRow(tableIndex, rowData);
}
});
}
}
export function injectFractalMemory() {
const settings = extension_settings[extensionName];
if (!settings || !settings.fractalMemory) return;
const memory = settings.fractalMemory;
let content = `【分形记忆系统】\n`;
content += `[宏观史诗]\n${memory.saga}\n\n`;
if (memory.arc.length > 0) {
content += `[当前篇章]\n${memory.arc.map(e => `- ${e}`).join('\n')}\n\n`;
}
if (memory.scene.length > 0) {
content += `[近期事态]\n${memory.scene.map(e => `- ${e}`).join('\n')}`;
}
setExtensionPrompt(
FRACTAL_INJECTION_KEY,
content,
0,
4,
false,
0
);
}
async function _callLLM(prompt) {
const settings = extension_settings[extensionName];
const messages = [{ role: 'user', content: prompt }];
try {
let responseText = '';
if (settings.ngmsEnabled) {
responseText = await callNgmsAI(messages);
} else {
responseText = await callAI(messages);
}
return responseText.trim();
} catch (error) {
console.error('[分形记忆] AI 调用失败:', error);
return null;
}
}